A spatial Analysis of Crime and Neighborhood Characteristics in Detroit Census Block Groups

Esther Akoto Amoako
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Abstract

Abstract. Crime has an inherent geographical quality and when a crime occurs, it happens within a particular space making spatiality essential component in crime studies. To prevent and respond to crimes, it is first essential to identify the factors that trigger crimes and then design policy and strategy based on each factor. This project investigates the spatial dimension of violent crime rates in the city of Detroit for 2019. Crime data were obtained from the City of Detroit Data Portal and demographic data relating to social disorganization theory were obtained from the Census Bureau. In the presence of spatial spill over and spatial dependence, the assumptions of classical statistics are violated, and Ordinary Least Squares estimations are inefficient in explaining spatial dimensions of crime. This paper uses explanatory variables relating to the social disorganization theory of crime and spatial autoregressive models to determine the predictors of violent crime in the City for the period. Using GeoDa 1.18 and ArcGIS Desktop 10.7.1 software package, Spatial Lag Models (SLM) and Spatial Error Models were carried out to determine which model has high performance in identifying predictors of violent crime. SLM outperformed SEM in terms of efficiency with (AIC:5268.52; Breusch-Pagan test: 9.8402; R2: 16% & Log Likelihood: −2627.26) > SEM (AIC: 5275.24; Breusch-Pagan test: 9.7601; R2: 15% & Log Likelihood: −2630.6194). Strong support is found for the spatial disorganization theory of crime. High percent ethnic heterogeneity (% black) and high college graduates are the strongest predictors of violent crime in the study area.
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底特律人口普查街区群体犯罪与邻里特征的空间分析
摘要犯罪具有固有的地域性,当犯罪发生时,它发生在特定的空间内,使空间性成为犯罪研究的重要组成部分。为了预防和应对犯罪,首先必须确定引发犯罪的因素,然后根据每个因素设计政策和策略。该项目调查了2019年底特律市暴力犯罪率的空间维度。犯罪数据来自底特律市数据门户网站,与社会无序理论相关的人口统计数据来自人口普查局。在存在空间溢出和空间依赖的情况下,经典统计学的假设被违反,普通最小二乘估计在解释犯罪的空间维度方面效率低下。本文使用与犯罪的社会解体理论相关的解释变量和空间自回归模型来确定该时期城市暴力犯罪的预测因子。利用GeoDa 1.18和ArcGIS Desktop 10.7.1软件包,通过空间滞后模型(SLM)和空间误差模型(Spatial Error Models)对暴力犯罪预测因子进行识别。SLM在效率方面优于SEM, (AIC:5268.52;Breusch-Pagan检验:9.8402;R2: 16% &对数似然:−2627.26)> SEM (AIC: 5275.24;Breusch-Pagan检验:9.7601;R2: 15%,对数似然:−2630.6194)。犯罪的空间无序性理论得到了有力的支持。在研究区域,高种族异质性(黑人)和高大学毕业生是暴力犯罪的最强预测因素。
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